Deploy Machine Learning Model for Effective Bank Telemarketing Campaign

M. Subramanian, Shankar Nayak Bhukya, R. Vijaya Prakash, K. N. Raju, Samrat Ray, Manikandaprabu Pandian
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引用次数: 1

Abstract

Marketing is a strategy that brings goods and services to all kinds of people. Most of the time marketing is not done to target the audience but to everyone to increase the chance of people opting for that particular product or service. Organizations use various marketing techniques like social media, telemarketing, advertisements, etc. The banking industry frequently chooses to speak with the user directly. The majority of the time, the customer hangs up as soon as they realize it was a telemarketing call because they are irritated. This is a result of a lack of essential client information. A deep learning model that analyses numerous parameters and forecasts whether a person is in a position to choose a loan or deposit money in the bank was developed to address this issue. For this purpose, a database of various parameters that the individual's demands depend on is compiled from Kaggle. On this dataset, several preprocessing approaches are then used. The procedures involve the elimination of missing values, category characteristics, outliers, undesirable features, and data balancing. To produce three machine learning (ML) models, three different techniques were applied. For this, the linear regression algorithm, the K-nearest neighbor algorithm, and the random forest (RF) algorithm are employed. To find the best algorithm for calling-list filtering, this is done. The results of testing these ML models using the preprocessed dataset are next analyzed. According to the results of the analysis, the RF algorithm is the best among the three algorithms. The RF algorithm's accuracy is somewhat more than 95%, which is higher than many other algorithms currently in use. In the future, the algorithm can be used as the backend process for a website or an application.
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利用机器学习模型进行有效的银行电话营销活动
市场营销是一种把商品和服务带给各种各样的人的策略。大多数时候,营销不是针对受众,而是针对每个人,以增加人们选择特定产品或服务的机会。组织使用各种营销技巧,如社交媒体、电话营销、广告等。银行业经常选择直接与用户对话。大多数情况下,客户一意识到这是一个营销电话就挂断了,因为他们很生气。这是由于缺乏必要的客户信息。为了解决这个问题,研究人员开发了一个深度学习模型,该模型可以分析大量参数,并预测一个人是否有能力选择在银行贷款或存款。为此,从Kaggle编译了一个包含个人需求所依赖的各种参数的数据库。在此数据集上,使用了几种预处理方法。该过程包括消除缺失值、类别特征、异常值、不期望的特征和数据平衡。为了生成三种机器学习(ML)模型,应用了三种不同的技术。为此,采用了线性回归算法、k近邻算法和随机森林(RF)算法。为了找到调用列表过滤的最佳算法,这样做了。接下来分析使用预处理数据集测试这些ML模型的结果。根据分析结果,射频算法是三种算法中最好的。RF算法的准确率略高于95%,高于目前使用的许多其他算法。在未来,该算法可以用作网站或应用程序的后端过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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